Litcius/Paper detail

What Does a Network Layer Hear? Analyzing Hidden Representations of End-to-End ASR Through Speech Synthesis

Chung‐Yi Li, Pei-Chieh Yuan, Hung-yi Lee

202026 citationsDOI

Abstract

End-to-end speech recognition systems have achieved competitive results compared to traditional systems. However, the complex transformations involved between layers given highly variable acoustic signals are hard to analyze. In this paper, we present our ASR probing model, which synthesizes speech from hidden representations of end-to-end ASR to examine the information maintained after each layer calculation. Listening to the synthesized speech, we observe gradual removal of speaker variability and noise as the layer goes deeper, which aligns with the previous studies on how deep network functions in speech recognition. This paper is the first study analyzing the end-to-end speech recognition model by demonstrating what each layer hears. Speaker verification and speech enhancement measurements on synthesized speech are also conducted to confirm our observation further.

Topics & Concepts

Speech recognitionEnd-to-end principleComputer scienceLayer (electronics)Active listeningSpeech synthesisVoice activity detectionAcoustic modelSpeech processingNoise (video)Variable (mathematics)Artificial intelligenceCommunicationOrganic chemistryChemistryMathematicsImage (mathematics)Mathematical analysisSociologySpeech Recognition and SynthesisSpeech and Audio ProcessingMusic and Audio Processing